Cognitive processes such as decision-making, rate calculation and planning require an accurate estimation of durations in the supra-second range- interval timing. In addition to being accurate, interval timing is scale invariant: the time-estimation errors are proportional to the estimated duration. The origin and mechanisms of this fundamental property are unknown. We discuss the computational properties of a circuit consisting of a large number of (input) neural oscillators projecting on a small number of (output) coincidence detector neurons, which allows time to be coded by the pattern of coincidental activation of its inputs. We showed analytically and checked numerically that time-scale invariance emerges from the neural noise. In particular, we found that errors or noise during storing or retrieving information regarding the memorized criterion time produce symmetric, Gaussian-like output whose width increases linearly with the criterion time. In contrast, frequency variability produces an asymmetric, long-tailed Gaussianlike output, that also obeys scale invariant property. In this architecture, time-scale invariance depends neither on the details of the input population, nor on the distribution probability of noise. © 2014 The Author(s).
CITATION STYLE
Oprisan, S. A., & Buhusi, C. V. (2014). What is all the noise about in interval timing? Philosophical Transactions of the Royal Society B: Biological Sciences, 369(1637). https://doi.org/10.1098/rstb.2012.0459
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